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[D F12] Bayesian analysis of structural equation models using parameter expansionChapitres de Livre : Titre du livre: "Statistical learning and data science", January 2012, Chapman & Hall/CRC, pp. 135-145, (isbn: 978-1-4398-6763-1)Mots clés: Bayesian statistics, structural equation models, parameter expansion, Gibbs sampler
Résumé:
Structural Equation Models with latent variables (SEM) are hypothetical constructs
used to represent causality relationships in data, where the observed
correlation structure is transferred into the correlation structure of latent variables.
In this paper a Bayesian analysis of SEM is proposed using parameter
expansion to overcome identifiability issues. An original use of posterior draws
from latent variables is proposed to model expert knowledge in uncertainty
analysis.
Equipe:
msdma
Collaboration:
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